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Learning Discriminative Relational Features for Sequence Labeling

7 May 2017
•
Naveen Nair
•
Ajay Nagesh
•
Ganesh Ramakrishnan

Discovering relational structure between input features in sequence labeling
models has shown to improve their accuracy in several problem settings. However, the search space of relational features is exponential in the number
of basic input features...Consequently, approaches that learn relational
features, tend to follow a greedy search strategy. In this paper, we study the
possibility of optimally learning and applying discriminative relational
features for sequence labeling. For learning features derived from inputs at a
particular sequence position, we propose a Hierarchical Kernels-based approach
(referred to as Hierarchical Kernel Learning for Structured Output Spaces -
StructHKL). This approach optimally and efficiently explores the hierarchical
structure of the feature space for problems with structured output spaces such
as sequence labeling. Since the StructHKL approach has limitations in learning
complex relational features derived from inputs at relative positions, we
propose two solutions to learn relational features namely, (i) enumerating
simple component features of complex relational features and discovering their
compositions using StructHKL and (ii) leveraging relational kernels, that
compute the similarity between instances implicitly, in the sequence labeling
problem. We perform extensive empirical evaluation on publicly available
datasets and record our observations on settings in which certain approaches
are effective.(read more)